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A machine learning methodology for improving the accuracy of laminar flame simulations with reduced chemical kinetics mechanisms

机译:一种机器学习方法,用于提高具有减少化学动力学机制的层状火焰模拟精度

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摘要

The focus of the present work is to investigate a new methodology for the rapid generation of laminar flame speed lookup tables, to be used replacing correlation laws in internal combustion engine simulations. Current production engines run mostly under the thickened wrinkled flame combustion regime, which allows the application of a flamelet modelling approach, which requires the a-priori evaluation of the laminar flame speed and thickness. The use of correlation laws, derived from experimental data, has the advantage to be extremely fast to compute, but displays a lack of precision in conditions far from the experimental reference, as it usually happens for ICE applications. On the other hand, the detailed chemical simulation of a freely propagating adiabatic flame, performed for a sufficiently refined grid of reference points, to be interpolated during runtime, might require hundreds of hours of computing. The use of a reduced chemical mechanism can potentially cut by orders of magnitude the required time, but on the other hand it will decrease accuracy. In the present work, the potential of integrating machine learning algorithms and neural networks in the workflow with different approaches was valuated, leveraging the potential of new and optimized software libraries, to reduce simulation times while maintaining a high level of accuracy, with respect to the results obtained with the complete scheme. (C) 2020 The Combustion Institute. Published by Elsevier Inc. All rights reserved.
机译:本作作品的重点是调查新的方法,用于快速生成层流火焰速度查找表,用于更换内燃机模拟中的相关定律。目前的生产发动机主要在增厚的皱纹火焰燃烧制度下运行,这允许施加火炬建模方法,这需要对层流速度和厚度的a-priori评估。使用源自实验数据的相关定律具有极快计算的优点,但在远离实验参考的条件下显示出缺乏精度,因为它通常发生冰应用。另一方面,在运行时在运行时间内为用于足够精细的参考点网格进行的自由传播的绝热火焰的详细化学仿真可能需要数百小时的计算。使用减少的化学机制可能潜在地通过规模所需的时间来切割,但另一方面,它会降低精度。在目前的工作中,在具有不同方法的工作流程中集成了机器学习算法和神经网络的可能性,利用了新的和优化的软件图书馆的潜力,以减少模拟时间,同时保持高水平的准确度,相对于通过完整方案获得的结果。 (c)2020燃烧研究所。由elsevier Inc.出版的所有权利保留。

著录项

  • 来源
    《Combustion and Flame》 |2020年第6期|72-81|共10页
  • 作者单位

    Univ Bologna DIN Dept Ind Engn Via Risorgimento 2 I-40136 Bologna Italy;

    Univ Bologna DIN Dept Ind Engn Via Risorgimento 2 I-40136 Bologna Italy;

    Univ Bologna DIN Dept Ind Engn Via Risorgimento 2 I-40136 Bologna Italy;

    NAIS Srl Via M Callas 4 I-40131 Bologna Italy;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);美国《生物学医学文摘》(MEDLINE);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Laminar flame speed; Machine learning; Reduced mechanism;

    机译:层流火焰速度;机器学习;减少机制;

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